Custom cover image
Custom cover image

Digital Manuscript Archiving System using Optical Character Recognition and Raspberry Pi with Camera / Shelo Princess P. Catuday and Clariz L. Ramos.

By: Contributor(s): Material type: TextPublication details: Rosario, Cavite : Cavite State University-CCAT Campus, 2019Description: xv, 56 leaves : illustrations ; 28 cmSubject(s): LOC classification:
  • UM QA 76.8 C38 2019
Summary: CATUDAY, SHELO PRINCESS P., RAMOS, CLARIZ L. Digital Manuscript Archiving System using Optical Character Recognition and Raspberry Pi with Camera. Design Project. Department of Engineering. Cavite State University - Cavite College of Arts and Trades Campus, Rosario, Cavite. June 2019. Adviser: Engr. Diane P. Arayata. Technical critic: John Michael A. Dharma. The study was conducted from December 2018 to May 2019 to develop a digital manuscript archiving system using optical character recognition and raspberry pi with picamera. Specifically aims to: 1) design and construct digital manuscript archiving system for organizing manuscript records with the following features: 1.1 TFT for controller; 1.2 capture image; 1.3image to text process; 1.4web — based GUI; and 1.Sstored in a database; 2) test and evaluate the technical performance of the archiving system in terms of the following: 2.1 accuracy of image processing; 2.2 process time of the system; 3) assess the perception of the user on the system in using ISO 25010: Quality Model for Quality Use; and 4) implement the system in Cavite State University-CCAT Campus. The researchers used raspberry pi to control the system. The researchers also used picamera which is connected to the raspberry pi to capture the manuscript and stored in the database. The system contained a web — based GUI as the software. Based on the result of the evaluation, the function of the system was accurate as long as the camera has highest specs. The average processing time is around 8 seconds. Some recommendation arises for the improvement of the study.
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Cover image Item type Current library Home library Collection Shelving location Call number Materials specified Vol info URL Copy number Status Notes Date due Barcode Item holds Item hold queue priority Course reserves
Thesis/Manuscripts/Dissertations Cavite State University - CCAT Campus Thesis/Manuscript/Dissertation TH UM QA 76.8 C38 2019 (Browse shelf(Opens below)) 1 copy Available T0005040

Undergraduate Design Project (BSCpE)--Cavite State University-CCAT Campus, 2019.

Includes bibliographical references and appendices.

CATUDAY, SHELO PRINCESS P., RAMOS, CLARIZ L. Digital Manuscript Archiving System using Optical Character Recognition and Raspberry Pi with Camera. Design Project. Department of Engineering. Cavite State University - Cavite College of Arts and Trades Campus, Rosario, Cavite. June 2019. Adviser: Engr. Diane P. Arayata. Technical critic: John Michael A. Dharma.

The study was conducted from December 2018 to May 2019 to develop a digital manuscript archiving system using optical character recognition and raspberry pi with picamera. Specifically aims to: 1) design and construct digital manuscript archiving system for organizing manuscript records with the following features: 1.1 TFT for controller; 1.2 capture image; 1.3image to text process; 1.4web — based GUI; and 1.Sstored in a database; 2) test and evaluate the technical performance of the archiving system in terms of the following: 2.1 accuracy of image processing; 2.2 process time of the system; 3) assess the perception of the user on the system in using ISO 25010: Quality Model for Quality Use; and 4) implement the system in Cavite State University-CCAT Campus.

The researchers used raspberry pi to control the system. The researchers also used picamera which is connected to the raspberry pi to capture the manuscript and stored in the database. The system contained a web — based GUI as the software.

Based on the result of the evaluation, the function of the system was accurate as long as the camera has highest specs. The average processing time is around 8 seconds. Some recommendation arises for the improvement of the study.

There are no comments on this title.

to post a comment.